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Home » Ebooks & Tutorials » Technical » Internet & Networking » PluralSight – Data Show and Tell: Data Analysis for Fake Job Posts

PluralSight – Data Show and Tell: Data Analysis for Fake Job Posts

08/01/2025 Learning for Life Leave a Comment

PluralSight – Data Show and Tell: Data Analysis for Fake Job Posts
English | Tutorial | Size: 103.34 MB

Learn how to analyze job posts using Python to detect potentially fake listings. This course covers a practical project teaching data analysis, feature engineering, and rule-based classification skills to flag suspicious patterns effectively.

What you’ll learn

Fake job postings are a growing challenge on online platforms, misleading job seekers and compromising trust. This course, Data Show and Tell: Data Analysis for Fake Job Posts, demonstrates how to tackle this issue using data analysis. You’ll learn how to extract meaningful features from job descriptions, apply rule-based logic to flag suspicious patterns, and visualize results to validate your findings.

By the end of this course, you’ll have built a functional system that identifies potentially fake job posts, showcasing how Python can be used to solve real-world problems and protect users from fraud.

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RAPIDGATOR:
https://rapidgator.net/file/4ca3f274e9327eab11b92c0c12c058e4/PluralSight.-.Data.Show.And.Tell.Data.Analysis.For.Fake.Job.Posts.2024.BOOKWARE-LERNSTUF.rar.html

TURBOBIT:
https://trbt.cc/wff997ocshai/PluralSight.-.Data.Show.And.Tell.Data.Analysis.For.Fake.Job.Posts.2024.BOOKWARE-LERNSTUF.rar.html

Internet & Networking Analysis, Data, FAKE, Job, Pluralsight, posts, Show, Tell

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